Three decades ago, Karp, Vazirani, and Vazirani (STOC 1990) defined the online matching problem and gave an optimal $1-\frac{1}{e} \approx 0.632$-competitive algorithm. Fifteen years later, Mehta, Saberi, Vazirani, and Vazirani (FOCS 2005) introduced the first generalization called AdWords driven by online advertising and obtained the optimal $1-\frac{1}{e}$ competitive ratio in the special case of small bids. It has been open ever since whether there is an algorithm for general bids better than the $0.5$-competitive greedy algorithm. This paper presents a $0.5016$-competitive algorithm for AdWords, answering this open question on the positive end. The algorithm builds on several ingredients, including a combination of the online primal dual framework and the configuration linear program of matching problems recently explored by Huang and Zhang (STOC 2020), a novel formulation of AdWords which we call the panorama view, and a generalization of the online correlated selection by Fahrbach, Huang, Tao, and Zadimorghaddam (FOCS 2020) which we call the panoramic online correlated selection.
翻译:三十年前,Karp、Vazirani和Vazirani(STOC 1990)界定了在线匹配问题,并给出了最佳的1\\frac{1 ⁇ e}\ approx 0.6332美元竞争性算法。十五年后,Mehta、Saberi、Vazirani和Vazirani(FOCS 2005)推出了第一种统称AdWords,由在线广告驱动,在小额竞标的特殊案例中获得了最佳的1\frac{1 ⁇ e}美元竞争比率。自此以后,一般报价的算法是否比0.5美元有竞争力的贪婪算法更好。本文为AdWords展示了0.5016美元的竞争性算法,从正面回答这一开放问题。算法建立在几个要素上,包括将黄黄和张最近探索的在线原始双框架和匹配问题的配置线性方案(STOC 2020)相结合,我们称之为全局观点的AdWords的新配方,以及由Fahrbach、Huanga、Ta和Zadimorg在线选择的网络链接(Weboria、Huang、Ta、Ta、Zadamam)的2020)。